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    <title>DEV Community: Aleksandr Pimenov</title>
    <description>The latest articles on DEV Community by Aleksandr Pimenov (@wachawo).</description>
    <link>https://dev.to/wachawo</link>
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      <title>DEV Community: Aleksandr Pimenov</title>
      <link>https://dev.to/wachawo</link>
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      <title>DXG Spark for Local LLM Development</title>
      <dc:creator>Aleksandr Pimenov</dc:creator>
      <pubDate>Wed, 05 Nov 2025 19:16:51 +0000</pubDate>
      <link>https://dev.to/wachawo/dxg-spark-for-local-llm-development-4g8a</link>
      <guid>https://dev.to/wachawo/dxg-spark-for-local-llm-development-4g8a</guid>
      <description>&lt;h2&gt;
  
  
  Hi everyone!
&lt;/h2&gt;

&lt;p&gt;&lt;a href="https://media2.dev.to/dynamic/image/width=800%2Cheight=%2Cfit=scale-down%2Cgravity=auto%2Cformat=auto/https%3A%2F%2Fdev-to-uploads.s3.amazonaws.com%2Fuploads%2Farticles%2F3ct2kln1sdc0ndxccmea.jpg" class="article-body-image-wrapper"&gt;&lt;img src="https://media2.dev.to/dynamic/image/width=800%2Cheight=%2Cfit=scale-down%2Cgravity=auto%2Cformat=auto/https%3A%2F%2Fdev-to-uploads.s3.amazonaws.com%2Fuploads%2Farticles%2F3ct2kln1sdc0ndxccmea.jpg" alt="DXG Spark" width="800" height="450"&gt;&lt;/a&gt;&lt;/p&gt;

&lt;p&gt;Recently, I got a &lt;strong&gt;DXG Spark&lt;/strong&gt; running &lt;strong&gt;Linux OS&lt;/strong&gt; (I’m a Linux user myself, so I was really glad to test its performance).&lt;br&gt;&lt;br&gt;
Among other things, I work on &lt;strong&gt;AI development&lt;/strong&gt;, and sometimes I face the question of which hardware to choose for running local &lt;strong&gt;LLM models&lt;/strong&gt;.&lt;br&gt;
&lt;/p&gt;

&lt;div class="highlight js-code-highlight"&gt;
&lt;pre class="highlight shell"&gt;&lt;code&gt;ollama run qwen2.5:14b &lt;span class="nt"&gt;--verbose&lt;/span&gt; &lt;span class="s2"&gt;"Why sky is blue?"&lt;/span&gt;
&lt;/code&gt;&lt;/pre&gt;

&lt;/div&gt;



&lt;p&gt;To properly compare all the hardware I have access to, I chose the &lt;strong&gt;qwen2.5:14b&lt;/strong&gt; model.&lt;br&gt;&lt;br&gt;
Why this one? Because it takes only &lt;strong&gt;9.0 GB&lt;/strong&gt; and easily fits into any video memory.&lt;br&gt;&lt;br&gt;
I measured the results using &lt;strong&gt;llm-benchmark&lt;/strong&gt; — see the table below.&lt;/p&gt;

&lt;p&gt;&lt;a href="https://media2.dev.to/dynamic/image/width=800%2Cheight=%2Cfit=scale-down%2Cgravity=auto%2Cformat=auto/https%3A%2F%2Fdev-to-uploads.s3.amazonaws.com%2Fuploads%2Farticles%2Fi0d6sswq9k05dqul3lvd.png" class="article-body-image-wrapper"&gt;&lt;img src="https://media2.dev.to/dynamic/image/width=800%2Cheight=%2Cfit=scale-down%2Cgravity=auto%2Cformat=auto/https%3A%2F%2Fdev-to-uploads.s3.amazonaws.com%2Fuploads%2Farticles%2Fi0d6sswq9k05dqul3lvd.png" alt="Compare" width="800" height="210"&gt;&lt;/a&gt;&lt;/p&gt;




&lt;h2&gt;
  
  
  Pros
&lt;/h2&gt;

&lt;ul&gt;
&lt;li&gt;Of course, it’s very nice that the OS is &lt;strong&gt;Linux&lt;/strong&gt;, and everything works exactly like in production.
&lt;/li&gt;
&lt;li&gt;It’s cool that the devices can be &lt;strong&gt;stacked&lt;/strong&gt; (although I didn’t manage to test this mode).
&lt;/li&gt;
&lt;li&gt;
&lt;strong&gt;A good memory reserve&lt;/strong&gt; — 128 GB of RAM.
&lt;/li&gt;
&lt;li&gt;
&lt;strong&gt;Silent:&lt;/strong&gt; even at 100% load, at 30 cm from me, I don’t hear any noise.
&lt;/li&gt;
&lt;li&gt;
&lt;strong&gt;Excellent software&lt;/strong&gt; — thanks to the &lt;strong&gt;Ubuntu/Linux community&lt;/strong&gt; and the DXG developers themselves.
&lt;/li&gt;
&lt;li&gt;&lt;strong&gt;Low power consumption.&lt;/strong&gt;&lt;/li&gt;
&lt;/ul&gt;




&lt;h2&gt;
  
  
  Cons
&lt;/h2&gt;

&lt;ul&gt;
&lt;li&gt;
&lt;strong&gt;Expensive&lt;/strong&gt;, especially considering what chip is inside.
On smaller models, my &lt;strong&gt;RTX 3060 16 GB&lt;/strong&gt; performs just as well.&lt;/li&gt;
&lt;/ul&gt;




&lt;h2&gt;
  
  
  Conclusions
&lt;/h2&gt;

&lt;p&gt;Without a doubt, I will find a use for it as a &lt;strong&gt;local hub&lt;/strong&gt; for running large LLM models to offload the main machine.&lt;br&gt;&lt;br&gt;
But I &lt;strong&gt;cannot recommend it&lt;/strong&gt;.&lt;/p&gt;

&lt;p&gt;For &lt;strong&gt;production&lt;/strong&gt; and &lt;strong&gt;data center&lt;/strong&gt; deployment, it might make sense — you can save on electricity.&lt;br&gt;&lt;br&gt;
For example, I wasn’t able to fit more than eight machines with &lt;strong&gt;4× RTX 6000 96 GB&lt;/strong&gt; each into one rack without additional power.&lt;br&gt;&lt;br&gt;
But I can’t imagine how to place the &lt;strong&gt;DXG Spark&lt;/strong&gt; in a rack.&lt;/p&gt;

&lt;p&gt;For &lt;strong&gt;home use&lt;/strong&gt;, in my opinion, it’s easier to get a &lt;strong&gt;Mac Studio&lt;/strong&gt; with 96 GB of memory — it costs $1000 more but works faster in tokens per second.&lt;br&gt;&lt;br&gt;
Or, if you don’t want to compromise, get an &lt;strong&gt;RTX 6000 96 GB&lt;/strong&gt; to get maximum performance.&lt;br&gt;&lt;br&gt;
Or buy &lt;strong&gt;two RTX 5090 32 GB&lt;/strong&gt; cards for the same money and get &lt;strong&gt;64 GB of VRAM&lt;/strong&gt;.&lt;/p&gt;




&lt;p&gt;If you have more logical explanations for what the &lt;strong&gt;DXG Spark&lt;/strong&gt; is really needed for, or if you want me to run some tests — I’ll be glad to discuss it in the comments.&lt;/p&gt;

&lt;p&gt;&lt;strong&gt;Wishing everyone good vibes and good luck choosing your hardware!&lt;/strong&gt;&lt;/p&gt;

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      <category>llm</category>
      <category>ai</category>
      <category>nvidia</category>
      <category>linux</category>
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